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Identifying aging-related genes in mouse hippocampus using gateway nodes

机译:使用网关节点识别小鼠海马中与衰老相关的基因

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Background High-throughput studies continue to produce volumes of metadata representing valuable sources of information to better guide biological research. With a stronger focus on data generation, analysis models that can readily identify actual signals have not received the same level of attention. This is due in part to high levels of noise and data heterogeneity, along with a lack of sophisticated algorithms for mining useful information. Networks have emerged as a powerful tool for modeling high-throughput data because they are capable of representing not only individual biological elements but also different types of relationships en masse. Moreover, well-established graph theoretic methodology can be applied to network models to increase efficiency and speed of analysis. In this project, we propose a network model that examines temporal data from mouse hippocampus at the transcriptional level via correlation of gene expression. Using this model, we formally define the concept of “gateway” nodes, loosely defined as nodes representing genes co-expressed in multiple states. We show that the proposed network model allows us to identify target genes implicated in hippocampal aging-related processes. Results By mining gateway genes related to hippocampal aging from networks made from gene expression in young and middle-aged mice, we provide a proof-of-concept of existence and importance of gateway nodes. Additionally, these results highlight how network analysis can act as a supplement to traditional statistical analysis of differentially expressed genes. Finally, we use the gateway nodes identified by our method as well as functional databases and literature to propose new targets for study of aging in the mouse hippocampus. Conclu s ions This research highlights the need for methods of temporal comparison using network models and provides a systems biology approach to extract information from correlation networks of gene expression. Our results identify a number of genes previously implicated in the aging mouse hippocampus related to synaptic plasticity and apoptosis. Additionally, this model identifies a novel set of aging genes previously uncharacterized in the hippocampus. This research can be viewed as a first-step for identifying the processes behind comparative experiments in aging that is applicable to any type of temporal multi-state network.
机译:背景技术高通量研究继续产生大量的元数据,这些元数据代表有价值的信息源,以更好地指导生物学研究。随着对数据生成的更加关注,可以轻松识别实际信号的分析模型没有受到同样的关注。这部分是由于高水平的噪声和数据异质性,以及缺乏用于挖掘有用信息的复杂算法所致。网络已经成为一种用于建模高通量数据的强大工具,因为它们不仅能够代表单个生物元素,而且还能代表各种类型的关系。此外,可以将成熟的图论方法论应用于网络模型以提高分析效率和速度。在这个项目中,我们提出了一个网络模型,该模型通过基因表达的相关性在转录水平上检查小鼠海马的时间数据。使用该模型,我们正式定义了“网关”节点的概念,松散地定义为代表在多种状态下共同表达的基因的节点。我们表明,提出的网络模型使我们能够鉴定与海马衰老相关过程有关的靶基因。结果通过从年轻和中年小鼠的基因表达网络中挖掘与海马衰老相关的网关基因,我们提供了网关节点存在和重要性的概念证明。此外,这些结果突出了网络分析如何可以作为差异表达基因的传统统计分析的补充。最后,我们使用通过我们的方法识别的网关节点以及功能数据库和文献来提出研究小鼠海马衰老的新目标。结论这项研究强调了使用网络模型进行时间比较的方法的需求,并提供了一种从基因表达的相关网络中提取信息的系统生物学方法。我们的结果确定了先前与衰老的小鼠海马有关的许多基因,这些基因与突触可塑性和细胞凋亡有关。此外,该模型还可以识别出以前在海马中未发现的一组新的衰老基因。这项研究可以看作是确定可用于任何类型的时间多状态网络的老化对比实验背后过程的第一步。

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